Online exams have become widely used to evaluate students' performance in mastering knowledge in recent years, especially during the pandemic of COVID-19. However, it is challenging to conduct proctoring for online exams due to the lack of face-to-face interaction. Also, prior research has shown that online exams are more vulnerable to various cheating behaviors, which can damage their credibility. This paper presents a novel visual analytics approach to facilitate the proctoring of online exams by analyzing the exam video records and mouse movement data of each student. Specifically, we detect and visualize suspected head and mouse movements of students in three levels of detail, which provides course instructors and teachers with convenient, efficient and reliable proctoring for online exams. Our extensive evaluations, including usage scenarios, a carefully-designed user study and expert interviews, demonstrate the effectiveness and usability of our approach.
翻译:近些年来,特别是在COVID-19大流行期间,网上考试被广泛用于评估学生掌握知识的成绩,特别是在COVID-19大流行期间;然而,由于缺乏面对面的互动,对网上考试进行校准是一项艰巨的任务;此外,先前的研究显示,网上考试更容易受到各种欺骗行为的影响,这可能会损害学生的可信度;本文件提出了一种新的视觉分析方法,通过分析每个学生的考试录像记录和鼠标运动数据,为在线考试提供奖励;具体地说,我们从三个细节层面对学生的可疑头部和鼠标运动进行检测和可视化,为课程教员和教师提供方便、高效和可靠的在线考试的奖励;我们的广泛评价,包括使用情景、精心设计的用户研究和专家访谈,显示了我们的方法的有效性和实用性。